Artificial intelligence in coronary artery calcium measurement: Barriers and solutions for implementation into daily practice.

Journal: European journal of radiology
Published Date:

Abstract

Coronary artery calcification (CAC) measurement is a valuable predictor of cardiovascular risk. However, its measurement can be time-consuming and complex, thus driving the desire for artificial intelligence (AI)-based approaches. The aim of this review is to explore the current status of CAC volume measurement using AI-based systems for the automated prediction of cardiovascular events. We also make proposals for the implementation of these systems into clinical practice. Research to date on applying AI to CAC scoring has shown the potential for automation and risk stratification, and, overall, efficacy and a high level of agreement with categorisation by trained clinicians have been demonstrated. However, research in this field has not been uniform or directed. One contributing factor may be a lack of integration and communication between computer scientists and cardiologists. Clinicians, institutions, and organisations should work together towards applying this technology to improve processes, preserve healthcare resources, and improve patient outcomes.

Authors

  • Toshihide Yamaoka
    Department of Diagnostic Imaging and Interventional Radiology, Kyoto Katsura Hospital, Japan. Electronic address: to4.yamaok@gmail.com.
  • Sachika Watanabe
    Department of Diagnostic Imaging and Interventional Radiology, Kyoto Katsura Hospital, Japan.